TF之DCGAN:基于TF利用DCGAN测试MNIST数据集并进行生成

目录

测试结果

测试过程全记录


测试结果

train_00_0099 train_00_0799
train_00_0899 train_01_0506
train_01_0606 train_02_0213
train_02_0313 train_02_1013
train_03_0020 train_03_0720

测试过程全记录

1140~1410

……开始测试
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2018-10-06 11:32:10.690386: I tensorflow/core/platform/cpu_feature_guard.cc:141] Your CPU supports instructions that this TensorFlow binary was not compiled to use: AVX2
data_MNIST\mnist
---------
Variables: name (type shape) [size]
---------
generator/g_h0_lin/Matrix:0 (float32_ref 110x1024) [112640, bytes: 450560]
generator/g_h0_lin/bias:0 (float32_ref 1024) [1024, bytes: 4096]
generator/g_bn0/beta:0 (float32_ref 1024) [1024, bytes: 4096]
generator/g_bn0/gamma:0 (float32_ref 1024) [1024, bytes: 4096]
generator/g_h1_lin/Matrix:0 (float32_ref 1034x6272) [6485248, bytes: 25940992]
generator/g_h1_lin/bias:0 (float32_ref 6272) [6272, bytes: 25088]
generator/g_bn1/beta:0 (float32_ref 6272) [6272, bytes: 25088]
generator/g_bn1/gamma:0 (float32_ref 6272) [6272, bytes: 25088]
generator/g_h2/w:0 (float32_ref 5x5x128x138) [441600, bytes: 1766400]
generator/g_h2/biases:0 (float32_ref 128) [128, bytes: 512]
generator/g_bn2/beta:0 (float32_ref 128) [128, bytes: 512]
generator/g_bn2/gamma:0 (float32_ref 128) [128, bytes: 512]
generator/g_h3/w:0 (float32_ref 5x5x1x138) [3450, bytes: 13800]
generator/g_h3/biases:0 (float32_ref 1) [1, bytes: 4]
discriminator/d_h0_conv/w:0 (float32_ref 5x5x11x11) [3025, bytes: 12100]
discriminator/d_h0_conv/biases:0 (float32_ref 11) [11, bytes: 44]
discriminator/d_h1_conv/w:0 (float32_ref 5x5x21x74) [38850, bytes: 155400]
discriminator/d_h1_conv/biases:0 (float32_ref 74) [74, bytes: 296]
discriminator/d_bn1/beta:0 (float32_ref 74) [74, bytes: 296]
discriminator/d_bn1/gamma:0 (float32_ref 74) [74, bytes: 296]
discriminator/d_h2_lin/Matrix:0 (float32_ref 3636x1024) [3723264, bytes: 14893056]
discriminator/d_h2_lin/bias:0 (float32_ref 1024) [1024, bytes: 4096]
discriminator/d_bn2/beta:0 (float32_ref 1024) [1024, bytes: 4096]
discriminator/d_bn2/gamma:0 (float32_ref 1024) [1024, bytes: 4096]
discriminator/d_h3_lin/Matrix:0 (float32_ref 1034x1) [1034, bytes: 4136]
discriminator/d_h3_lin/bias:0 (float32_ref 1) [1, bytes: 4]
Total size of variables: 10834690
Total bytes of variables: 43338760[*] Reading checkpoints...[*] Failed to find a checkpoint[!] Load failed...
Epoch: [ 0] [   0/1093] time: 3.3617, d_loss: 1.79891801, g_loss: 0.73078763
Epoch: [ 0] [   1/1093] time: 6.4123, d_loss: 1.46442509, g_loss: 0.61579478
Epoch: [ 0] [   2/1093] time: 8.7562, d_loss: 1.49022853, g_loss: 0.67894053
Epoch: [ 0] [   3/1093] time: 10.9214, d_loss: 1.40174472, g_loss: 0.66220653
Epoch: [ 0] [   4/1093] time: 13.3050, d_loss: 1.40663481, g_loss: 0.69936526
Epoch: [ 0] [   5/1093] time: 15.5709, d_loss: 1.38957083, g_loss: 0.68421012
Epoch: [ 0] [   6/1093] time: 17.8600, d_loss: 1.39213061, g_loss: 0.68934584
Epoch: [ 0] [   7/1093] time: 20.4708, d_loss: 1.39794362, g_loss: 0.69806755
Epoch: [ 0] [   8/1093] time: 23.0654, d_loss: 1.43503237, g_loss: 0.70846951
Epoch: [ 0] [   9/1093] time: 25.5358, d_loss: 1.39276147, g_loss: 0.70669782
Epoch: [ 0] [  10/1093] time: 28.2617, d_loss: 1.42136300, g_loss: 0.70364445
Epoch: [ 0] [  11/1093] time: 30.8038, d_loss: 1.40051103, g_loss: 0.70014894
Epoch: [ 0] [  12/1093] time: 33.3130, d_loss: 1.37765169, g_loss: 0.70824486
Epoch: [ 0] [  13/1093] time: 35.6096, d_loss: 1.38219857, g_loss: 0.69451976
Epoch: [ 0] [  14/1093] time: 37.8537, d_loss: 1.36866033, g_loss: 0.70824432
Epoch: [ 0] [  15/1093] time: 40.1426, d_loss: 1.36621869, g_loss: 0.69405836
Epoch: [ 0] [  16/1093] time: 42.7074, d_loss: 1.37535453, g_loss: 0.69518888
Epoch: [ 0] [  17/1093] time: 44.8565, d_loss: 1.36989605, g_loss: 0.69930756
Epoch: [ 0] [  18/1093] time: 46.7869, d_loss: 1.36563087, g_loss: 0.69781649
Epoch: [ 0] [  19/1093] time: 48.7288, d_loss: 1.36397326, g_loss: 0.70866680
Epoch: [ 0] [  20/1093] time: 51.0654, d_loss: 1.38101411, g_loss: 0.69544500
Epoch: [ 0] [  21/1093] time: 53.5399, d_loss: 1.46281934, g_loss: 0.70643008
Epoch: [ 0] [  22/1093] time: 56.5684, d_loss: 1.43966162, g_loss: 0.71961737
Epoch: [ 0] [  23/1093] time: 59.5954, d_loss: 1.42399430, g_loss: 0.72861439
Epoch: [ 0] [  24/1093] time: 62.9032, d_loss: 1.41276562, g_loss: 0.70471978
Epoch: [ 0] [  25/1093] time: 65.7187, d_loss: 1.48300290, g_loss: 0.71538234
Epoch: [ 0] [  26/1093] time: 68.6204, d_loss: 1.39843416, g_loss: 0.68771482
Epoch: [ 0] [  27/1093] time: 70.8153, d_loss: 1.42166626, g_loss: 0.69409549
Epoch: [ 0] [  28/1093] time: 73.5776, d_loss: 1.39594829, g_loss: 0.68035471
Epoch: [ 0] [  29/1093] time: 76.6749, d_loss: 1.39489424, g_loss: 0.69306409
Epoch: [ 0] [  30/1093] time: 79.8282, d_loss: 1.41070235, g_loss: 0.68208236
Epoch: [ 0] [  31/1093] time: 83.5562, d_loss: 1.39976072, g_loss: 0.69344074
Epoch: [ 0] [  32/1093] time: 86.5431, d_loss: 1.39875138, g_loss: 0.69864786
Epoch: [ 0] [  33/1093] time: 89.7386, d_loss: 1.39117682, g_loss: 0.68384939
Epoch: [ 0] [  34/1093] time: 92.1129, d_loss: 1.39306462, g_loss: 0.68603516
Epoch: [ 0] [  35/1093] time: 94.6717, d_loss: 1.39766645, g_loss: 0.67713618
Epoch: [ 0] [  36/1093] time: 97.4150, d_loss: 1.39619994, g_loss: 0.68300879
Epoch: [ 0] [  37/1093] time: 99.9408, d_loss: 1.39534819, g_loss: 0.69076747
Epoch: [ 0] [  38/1093] time: 103.1213, d_loss: 1.39753985, g_loss: 0.68903100
Epoch: [ 0] [  39/1093] time: 105.8520, d_loss: 1.41161013, g_loss: 0.69302136
Epoch: [ 0] [  40/1093] time: 108.9503, d_loss: 1.38997078, g_loss: 0.68370312
Epoch: [ 0] [  41/1093] time: 112.2070, d_loss: 1.39786303, g_loss: 0.69124269
Epoch: [ 0] [  42/1093] time: 115.2431, d_loss: 1.38943410, g_loss: 0.69021893
Epoch: [ 0] [  43/1093] time: 118.6511, d_loss: 1.38621378, g_loss: 0.68407494
Epoch: [ 0] [  44/1093] time: 122.0462, d_loss: 1.39240563, g_loss: 0.69688046
Epoch: [ 0] [  45/1093] time: 125.3139, d_loss: 1.39452100, g_loss: 0.69252259
Epoch: [ 0] [  46/1093] time: 129.0117, d_loss: 1.39167857, g_loss: 0.68246353
Epoch: [ 0] [  47/1093] time: 132.8489, d_loss: 1.39049268, g_loss: 0.69009811
Epoch: [ 0] [  48/1093] time: 136.4826, d_loss: 1.39105415, g_loss: 0.69570535
Epoch: [ 0] [  49/1093] time: 139.8832, d_loss: 1.38744533, g_loss: 0.68307704
Epoch: [ 0] [  50/1093] time: 142.6343, d_loss: 1.39128542, g_loss: 0.68657452
Epoch: [ 0] [  51/1093] time: 145.0365, d_loss: 1.39720774, g_loss: 0.68289292
Epoch: [ 0] [  52/1093] time: 148.8226, d_loss: 1.40998244, g_loss: 0.69946194
Epoch: [ 0] [  53/1093] time: 151.4981, d_loss: 1.42358077, g_loss: 0.69425476
Epoch: [ 0] [  54/1093] time: 154.4366, d_loss: 1.40655017, g_loss: 0.69315112
Epoch: [ 0] [  55/1093] time: 157.9840, d_loss: 1.39314961, g_loss: 0.67903620
Epoch: [ 0] [  56/1093] time: 160.5293, d_loss: 1.39538550, g_loss: 0.68701828
Epoch: [ 0] [  57/1093] time: 162.8455, d_loss: 1.40030372, g_loss: 0.68119174
Epoch: [ 0] [  58/1093] time: 165.5109, d_loss: 1.39839721, g_loss: 0.68374062
Epoch: [ 0] [  59/1093] time: 168.1250, d_loss: 1.40220833, g_loss: 0.67849696
Epoch: [ 0] [  60/1093] time: 170.4443, d_loss: 1.40346980, g_loss: 0.68534362
Epoch: [ 0] [  61/1093] time: 172.5757, d_loss: 1.40919614, g_loss: 0.68264174
Epoch: [ 0] [  62/1093] time: 175.3375, d_loss: 1.41680074, g_loss: 0.69107366
Epoch: [ 0] [  63/1093] time: 178.1931, d_loss: 1.42677331, g_loss: 0.68684256
Epoch: [ 0] [  64/1093] time: 180.9363, d_loss: 1.41873085, g_loss: 0.68174267
Epoch: [ 0] [  65/1093] time: 183.4142, d_loss: 1.41352820, g_loss: 0.69168335
Epoch: [ 0] [  66/1093] time: 186.2004, d_loss: 1.40492952, g_loss: 0.68485790
Epoch: [ 0] [  67/1093] time: 188.9013, d_loss: 1.41416049, g_loss: 0.69247150
Epoch: [ 0] [  68/1093] time: 191.3907, d_loss: 1.44085050, g_loss: 0.70080090
Epoch: [ 0] [  69/1093] time: 193.6596, d_loss: 1.42936659, g_loss: 0.70780182
Epoch: [ 0] [  70/1093] time: 196.2392, d_loss: 1.39855242, g_loss: 0.68066621
Epoch: [ 0] [  71/1093] time: 198.6732, d_loss: 1.39962685, g_loss: 0.68119228
Epoch: [ 0] [  72/1093] time: 201.1359, d_loss: 1.39792156, g_loss: 0.68046838
Epoch: [ 0] [  73/1093] time: 203.9913, d_loss: 1.40156364, g_loss: 0.68185544
Epoch: [ 0] [  74/1093] time: 206.5057, d_loss: 1.40137339, g_loss: 0.68439347
Epoch: [ 0] [  75/1093] time: 208.9730, d_loss: 1.39628625, g_loss: 0.68880224
Epoch: [ 0] [  76/1093] time: 212.1802, d_loss: 1.39695120, g_loss: 0.69053137
Epoch: [ 0] [  77/1093] time: 215.1069, d_loss: 1.39827728, g_loss: 0.67404974
Epoch: [ 0] [  78/1093] time: 217.8231, d_loss: 1.39441288, g_loss: 0.68811285
Epoch: [ 0] [  79/1093] time: 220.8017, d_loss: 1.39862061, g_loss: 0.68243313
Epoch: [ 0] [  80/1093] time: 223.6711, d_loss: 1.39560962, g_loss: 0.68420863
Epoch: [ 0] [  81/1093] time: 226.1243, d_loss: 1.39474165, g_loss: 0.68446684
Epoch: [ 0] [  82/1093] time: 228.9125, d_loss: 1.39735079, g_loss: 0.68914992
Epoch: [ 0] [  83/1093] time: 231.7087, d_loss: 1.40495729, g_loss: 0.67565703
Epoch: [ 0] [  84/1093] time: 234.3499, d_loss: 1.40376186, g_loss: 0.68402076
Epoch: [ 0] [  85/1093] time: 236.8927, d_loss: 1.39633703, g_loss: 0.67996454
Epoch: [ 0] [  86/1093] time: 239.8556, d_loss: 1.40431571, g_loss: 0.68185967
Epoch: [ 0] [  87/1093] time: 242.7527, d_loss: 1.40456629, g_loss: 0.68880403
Epoch: [ 0] [  88/1093] time: 245.2765, d_loss: 1.39363539, g_loss: 0.68647277
Epoch: [ 0] [  89/1093] time: 247.9097, d_loss: 1.39768720, g_loss: 0.68281728
Epoch: [ 0] [  90/1093] time: 250.6797, d_loss: 1.40258384, g_loss: 0.69015211
Epoch: [ 0] [  91/1093] time: 252.9605, d_loss: 1.41010988, g_loss: 0.69163489
Epoch: [ 0] [  92/1093] time: 255.8331, d_loss: 1.39705300, g_loss: 0.67692769
Epoch: [ 0] [  93/1093] time: 258.7976, d_loss: 1.41552734, g_loss: 0.69169050
Epoch: [ 0] [  94/1093] time: 262.1104, d_loss: 1.39865696, g_loss: 0.68793559
Epoch: [ 0] [  95/1093] time: 265.0370, d_loss: 1.40191650, g_loss: 0.68027002
Epoch: [ 0] [  96/1093] time: 267.7568, d_loss: 1.40628874, g_loss: 0.67845261
Epoch: [ 0] [  97/1093] time: 270.7154, d_loss: 1.40095508, g_loss: 0.68664324
Epoch: [ 0] [  98/1093] time: 273.6299, d_loss: 1.41269326, g_loss: 0.68330830
Epoch: [ 0] [  99/1093] time: 276.4041, d_loss: 1.41343331, g_loss: 0.69674391
[Sample] d_loss: 1.39404178, g_loss: 0.71861243
Epoch: [ 0] [ 100/1093] time: 279.9370, d_loss: 1.39926529, g_loss: 0.69326425
Epoch: [ 0] [ 101/1093] time: 282.8589, d_loss: 1.39894390, g_loss: 0.68361241
Epoch: [ 0] [ 102/1093] time: 285.4811, d_loss: 1.39818084, g_loss: 0.69090337
Epoch: [ 0] [ 103/1093] time: 287.6454, d_loss: 1.39627695, g_loss: 0.67909706
Epoch: [ 0] [ 104/1093] time: 290.3276, d_loss: 1.39514160, g_loss: 0.68727589
Epoch: [ 0] [ 105/1093] time: 293.5694, d_loss: 1.40148556, g_loss: 0.68616998
Epoch: [ 0] [ 106/1093] time: 296.7065, d_loss: 1.39823532, g_loss: 0.68184149
Epoch: [ 0] [ 107/1093] time: 299.5040, d_loss: 1.40077090, g_loss: 0.67544007
Epoch: [ 0] [ 108/1093] time: 302.5080, d_loss: 1.40159750, g_loss: 0.68739390
Epoch: [ 0] [ 109/1093] time: 305.3266, d_loss: 1.40064311, g_loss: 0.68674183
Epoch: [ 0] [ 110/1093] time: 308.2463, d_loss: 1.40190828, g_loss: 0.68489563……Epoch: [ 0] [ 190/1093] time: 535.9742, d_loss: 1.39696872, g_loss: 0.67972469
Epoch: [ 0] [ 191/1093] time: 538.4506, d_loss: 1.39499533, g_loss: 0.68089843
Epoch: [ 0] [ 192/1093] time: 541.1816, d_loss: 1.39483309, g_loss: 0.68199342
Epoch: [ 0] [ 193/1093] time: 544.6827, d_loss: 1.39154720, g_loss: 0.69034952
Epoch: [ 0] [ 194/1093] time: 548.6390, d_loss: 1.38941956, g_loss: 0.68652773
Epoch: [ 0] [ 195/1093] time: 551.9678, d_loss: 1.39027929, g_loss: 0.69264108
Epoch: [ 0] [ 196/1093] time: 555.3258, d_loss: 1.39162266, g_loss: 0.68833613
Epoch: [ 0] [ 197/1093] time: 558.5404, d_loss: 1.40050042, g_loss: 0.68856359
Epoch: [ 0] [ 198/1093] time: 561.3181, d_loss: 1.39854860, g_loss: 0.69332385
Epoch: [ 0] [ 199/1093] time: 563.8952, d_loss: 1.40790129, g_loss: 0.69219285
[Sample] d_loss: 1.39614487, g_loss: 0.70220172
Epoch: [ 0] [ 200/1093] time: 566.5791, d_loss: 1.39575028, g_loss: 0.68371403
Epoch: [ 0] [ 201/1093] time: 568.9093, d_loss: 1.39769495, g_loss: 0.68171024
Epoch: [ 0] [ 202/1093] time: 571.4728, d_loss: 1.40282321, g_loss: 0.67665672
Epoch: [ 0] [ 203/1093] time: 574.0684, d_loss: 1.40040171, g_loss: 0.68347836
Epoch: [ 0] [ 204/1093] time: 576.6086, d_loss: 1.40370631, g_loss: 0.67588425
Epoch: [ 0] [ 205/1093] time: 579.1860, d_loss: 1.40058494, g_loss: 0.67948377
Epoch: [ 0] [ 206/1093] time: 581.7698, d_loss: 1.40094650, g_loss: 0.68511415
Epoch: [ 0] [ 207/1093] time: 584.3541, d_loss: 1.39703560, g_loss: 0.68563807
Epoch: [ 0] [ 208/1093] time: 586.9515, d_loss: 1.39535570, g_loss: 0.69189703
Epoch: [ 0] [ 209/1093] time: 589.5623, d_loss: 1.39087117, g_loss: 0.68965638
Epoch: [ 0] [ 210/1093] time: 592.1490, d_loss: 1.39308906, g_loss: 0.68321383……Epoch: [ 0] [ 889/1093] time: 2314.8393, d_loss: 1.39859378, g_loss: 0.67322266
Epoch: [ 0] [ 890/1093] time: 2316.9278, d_loss: 1.39070845, g_loss: 0.68732977
Epoch: [ 0] [ 891/1093] time: 2319.3591, d_loss: 1.39387286, g_loss: 0.67873466
Epoch: [ 0] [ 892/1093] time: 2321.4178, d_loss: 1.39172828, g_loss: 0.68356216
Epoch: [ 0] [ 893/1093] time: 2323.4089, d_loss: 1.39842272, g_loss: 0.67815489
Epoch: [ 0] [ 894/1093] time: 2325.6301, d_loss: 1.39376366, g_loss: 0.68304271
Epoch: [ 0] [ 895/1093] time: 2328.0387, d_loss: 1.39139628, g_loss: 0.67735171
Epoch: [ 0] [ 896/1093] time: 2330.0398, d_loss: 1.39796066, g_loss: 0.67579186
Epoch: [ 0] [ 897/1093] time: 2332.2183, d_loss: 1.39888477, g_loss: 0.66883886
Epoch: [ 0] [ 898/1093] time: 2334.6396, d_loss: 1.39262605, g_loss: 0.67790604
Epoch: [ 0] [ 899/1093] time: 2336.6380, d_loss: 1.38774049, g_loss: 0.68282270
[Sample] d_loss: 1.38685536, g_loss: 0.70143592
Epoch: [ 0] [ 900/1093] time: 2339.1794, d_loss: 1.39559400, g_loss: 0.67823637
Epoch: [ 0] [ 901/1093] time: 2341.5979, d_loss: 1.39618373, g_loss: 0.67359304
Epoch: [ 0] [ 902/1093] time: 2343.6090, d_loss: 1.40060043, g_loss: 0.68315041
Epoch: [ 0] [ 903/1093] time: 2345.6101, d_loss: 1.38607645, g_loss: 0.68459594
Epoch: [ 0] [ 904/1093] time: 2347.6186, d_loss: 1.38612366, g_loss: 0.68465877
Epoch: [ 0] [ 905/1093] time: 2349.8598, d_loss: 1.38972747, g_loss: 0.68110597
Epoch: [ 0] [ 906/1093] time: 2352.2383, d_loss: 1.40021336, g_loss: 0.67477131
Epoch: [ 0] [ 907/1093] time: 2354.2594, d_loss: 1.38780701, g_loss: 0.68614316
Epoch: [ 0] [ 908/1093] time: 2356.4380, d_loss: 1.39729989, g_loss: 0.68168002
Epoch: [ 0] [ 909/1093] time: 2358.8492, d_loss: 1.39604807, g_loss: 0.68169260
Epoch: [ 0] [ 910/1093] time: 2360.8703, d_loss: 1.39347506, g_loss: 0.67698503……Epoch: [ 0] [ 990/1093] time: 2534.4882, d_loss: 1.38051999, g_loss: 0.68829250
Epoch: [ 0] [ 991/1093] time: 2536.8594, d_loss: 1.38707495, g_loss: 0.69181627
Epoch: [ 0] [ 992/1093] time: 2538.9105, d_loss: 1.39524150, g_loss: 0.68155080
Epoch: [ 0] [ 993/1093] time: 2540.9216, d_loss: 1.39088154, g_loss: 0.68005645
Epoch: [ 0] [ 994/1093] time: 2543.1603, d_loss: 1.38700223, g_loss: 0.68155348
Epoch: [ 0] [ 995/1093] time: 2545.5215, d_loss: 1.40298247, g_loss: 0.66744435
Epoch: [ 0] [ 996/1093] time: 2547.5300, d_loss: 1.40880179, g_loss: 0.66607797
Epoch: [ 0] [ 997/1093] time: 2549.5310, d_loss: 1.39295077, g_loss: 0.67571455
Epoch: [ 0] [ 998/1093] time: 2551.8797, d_loss: 1.39118791, g_loss: 0.68550998
Epoch: [ 0] [ 999/1093] time: 2554.1409, d_loss: 1.38995099, g_loss: 0.68077219
[Sample] d_loss: 1.39188242, g_loss: 0.69870007
Epoch: [ 0] [1000/1093] time: 2556.5095, d_loss: 1.38937902, g_loss: 0.68420708
Epoch: [ 0] [1001/1093] time: 2559.4411, d_loss: 1.38841224, g_loss: 0.67964196
Epoch: [ 0] [1002/1093] time: 2561.3995, d_loss: 1.39025033, g_loss: 0.68857718
Epoch: [ 0] [1003/1093] time: 2563.4106, d_loss: 1.38774192, g_loss: 0.68713319
Epoch: [ 0] [1004/1093] time: 2565.7818, d_loss: 1.38517952, g_loss: 0.69962525
Epoch: [ 0] [1005/1093] time: 2568.0208, d_loss: 1.39758313, g_loss: 0.68758988
Epoch: [ 0] [1006/1093] time: 2570.0219, d_loss: 1.39658952, g_loss: 0.69050717
Epoch: [ 0] [1007/1093] time: 2572.0104, d_loss: 1.39825773, g_loss: 0.67399806
Epoch: [ 0] [1008/1093] time: 2574.2516, d_loss: 1.39735007, g_loss: 0.68345094
Epoch: [ 0] [1009/1093] time: 2576.4203, d_loss: 1.39032114, g_loss: 0.67591566
Epoch: [ 0] [1010/1093] time: 2578.4213, d_loss: 1.39701056, g_loss: 0.67272741……Epoch: [ 0] [1080/1093] time: 2729.6181, d_loss: 1.38660502, g_loss: 0.67934191
Epoch: [ 0] [1081/1093] time: 2731.6592, d_loss: 1.39765692, g_loss: 0.67786539
Epoch: [ 0] [1082/1093] time: 2733.8804, d_loss: 1.38977814, g_loss: 0.67776024
Epoch: [ 0] [1083/1093] time: 2736.3117, d_loss: 1.39641953, g_loss: 0.67741239
Epoch: [ 0] [1084/1093] time: 2738.3027, d_loss: 1.39849305, g_loss: 0.66936278
Epoch: [ 0] [1085/1093] time: 2740.2938, d_loss: 1.39174080, g_loss: 0.67819309
Epoch: [ 0] [1086/1093] time: 2742.3049, d_loss: 1.39430928, g_loss: 0.67690992
Epoch: [ 0] [1087/1093] time: 2744.5361, d_loss: 1.38831007, g_loss: 0.67887449
Epoch: [ 0] [1088/1093] time: 2746.8773, d_loss: 1.38743389, g_loss: 0.67928505
Epoch: [ 0] [1089/1093] time: 2748.8884, d_loss: 1.40019858, g_loss: 0.66898370
Epoch: [ 0] [1090/1093] time: 2750.8895, d_loss: 1.38798690, g_loss: 0.67247820
Epoch: [ 0] [1091/1093] time: 2753.2107, d_loss: 1.39350247, g_loss: 0.67379618
Epoch: [ 0] [1092/1093] time: 2755.4819, d_loss: 1.39420724, g_loss: 0.67820472
Epoch: [ 1] [   0/1093] time: 2757.4730, d_loss: 1.39512217, g_loss: 0.67989075
Epoch: [ 1] [   1/1093] time: 2759.4640, d_loss: 1.40053773, g_loss: 0.67416751
Epoch: [ 1] [   2/1093] time: 2761.6852, d_loss: 1.39061642, g_loss: 0.68139255
Epoch: [ 1] [   3/1093] time: 2764.0665, d_loss: 1.39106679, g_loss: 0.68662095
Epoch: [ 1] [   4/1093] time: 2766.0576, d_loss: 1.39566541, g_loss: 0.68151307
Epoch: [ 1] [   5/1093] time: 2768.2087, d_loss: 1.39311624, g_loss: 0.67771947
Epoch: [ 1] [   6/1093] time: 2770.6400, d_loss: 1.38920772, g_loss: 0.68134636
[Sample] d_loss: 1.37139106, g_loss: 0.70543092
Epoch: [ 1] [   7/1093] time: 2773.0913, d_loss: 1.39394724, g_loss: 0.68192399
Epoch: [ 1] [   8/1093] time: 2775.0624, d_loss: 1.38887393, g_loss: 0.68720746
Epoch: [ 1] [   9/1093] time: 2777.4136, d_loss: 1.38760364, g_loss: 0.67848784
Epoch: [ 1] [  10/1093] time: 2779.6648, d_loss: 1.39168441, g_loss: 0.68020177……Epoch: [ 1] [ 100/1093] time: 2974.2737, d_loss: 1.39194596, g_loss: 0.67957735
Epoch: [ 1] [ 101/1093] time: 2976.2621, d_loss: 1.38731110, g_loss: 0.68144447
Epoch: [ 1] [ 102/1093] time: 2978.5533, d_loss: 1.39706790, g_loss: 0.67597866
Epoch: [ 1] [ 103/1093] time: 2980.8618, d_loss: 1.39810014, g_loss: 0.66924357
Epoch: [ 1] [ 104/1093] time: 2982.8729, d_loss: 1.38598788, g_loss: 0.67554963
Epoch: [ 1] [ 105/1093] time: 2984.8740, d_loss: 1.39240956, g_loss: 0.67254972
Epoch: [ 1] [ 106/1093] time: 2986.9812, d_loss: 1.39499450, g_loss: 0.67016041
[Sample] d_loss: 1.38732648, g_loss: 0.69703865
Epoch: [ 1] [ 107/1093] time: 2990.3271, d_loss: 1.40116143, g_loss: 0.66683507
Epoch: [ 1] [ 108/1093] time: 2992.7527, d_loss: 1.39175665, g_loss: 0.68012154
Epoch: [ 1] [ 109/1093] time: 2995.0739, d_loss: 1.39712453, g_loss: 0.67622381
Epoch: [ 1] [ 110/1093] time: 2997.6827, d_loss: 1.39206731, g_loss: 0.68065107……Epoch: [ 1] [ 200/1093] time: 3202.6353, d_loss: 1.38041210, g_loss: 0.69372916
Epoch: [ 1] [ 201/1093] time: 3204.9065, d_loss: 1.37933481, g_loss: 0.68821752
Epoch: [ 1] [ 202/1093] time: 3206.9749, d_loss: 1.38175058, g_loss: 0.68613887
Epoch: [ 1] [ 203/1093] time: 3209.2561, d_loss: 1.39573455, g_loss: 0.67698872
Epoch: [ 1] [ 204/1093] time: 3211.8648, d_loss: 1.39549482, g_loss: 0.67765439
Epoch: [ 1] [ 205/1093] time: 3213.9159, d_loss: 1.39421272, g_loss: 0.67087078
Epoch: [ 1] [ 206/1093] time: 3215.9443, d_loss: 1.38698030, g_loss: 0.68094480
[Sample] d_loss: 1.38046920, g_loss: 0.69818783
Epoch: [ 1] [ 207/1093] time: 3218.7558, d_loss: 1.38357759, g_loss: 0.68195403
Epoch: [ 1] [ 208/1093] time: 3220.9143, d_loss: 1.38065100, g_loss: 0.68955791
Epoch: [ 1] [ 209/1093] time: 3222.9153, d_loss: 1.39242363, g_loss: 0.67996120
Epoch: [ 1] [ 210/1093] time: 3225.2766, d_loss: 1.39360881, g_loss: 0.67260170
Epoch: [ 1] [ 211/1093] time: 3227.5352, d_loss: 1.38966787, g_loss: 0.68173468……Epoch: [ 1] [ 300/1093] time: 3423.0672, d_loss: 1.38942528, g_loss: 0.68868965
Epoch: [ 1] [ 301/1093] time: 3425.2884, d_loss: 1.39816928, g_loss: 0.67360890
Epoch: [ 1] [ 302/1093] time: 3427.7397, d_loss: 1.39097309, g_loss: 0.67551196
Epoch: [ 1] [ 303/1093] time: 3430.0009, d_loss: 1.38649738, g_loss: 0.68443769
Epoch: [ 1] [ 304/1093] time: 3432.1621, d_loss: 1.37904358, g_loss: 0.68674159
Epoch: [ 1] [ 305/1093] time: 3434.4833, d_loss: 1.38382614, g_loss: 0.68362451
Epoch: [ 1] [ 306/1093] time: 3436.7545, d_loss: 1.39781308, g_loss: 0.67674035
[Sample] d_loss: 1.38065791, g_loss: 0.70156980
Epoch: [ 1] [ 307/1093] time: 3439.1758, d_loss: 1.38384795, g_loss: 0.68276435
Epoch: [ 1] [ 308/1093] time: 3441.1669, d_loss: 1.38682365, g_loss: 0.67517352
Epoch: [ 1] [ 309/1093] time: 3443.1579, d_loss: 1.39301312, g_loss: 0.67435873
Epoch: [ 1] [ 310/1093] time: 3445.3991, d_loss: 1.38605368, g_loss: 0.67695403
Epoch: [ 1] [ 311/1093] time: 3447.7679, d_loss: 1.39315736, g_loss: 0.67680848
Epoch: [ 1] [ 312/1093] time: 3449.7789, d_loss: 1.39378428, g_loss: 0.67591465
Epoch: [ 1] [ 313/1093] time: 3451.9869, d_loss: 1.38802958, g_loss: 0.68172151
Epoch: [ 1] [ 314/1093] time: 3454.4282, d_loss: 1.39341950, g_loss: 0.67019951
Epoch: [ 1] [ 315/1093] time: 3456.4468, d_loss: 1.38873637, g_loss: 0.67581522……6023
Epoch: [ 1] [ 500/1093] time: 3862.5952, d_loss: 1.37781966, g_loss: 0.68809289
Epoch: [ 1] [ 501/1093] time: 3864.8864, d_loss: 1.39578390, g_loss: 0.67059171
Epoch: [ 1] [ 502/1093] time: 3866.8775, d_loss: 1.37757528, g_loss: 0.69209492
Epoch: [ 1] [ 503/1093] time: 3868.8760, d_loss: 1.39398217, g_loss: 0.67311525
Epoch: [ 1] [ 504/1093] time: 3871.1472, d_loss: 1.39142919, g_loss: 0.67788839
Epoch: [ 1] [ 505/1093] time: 3873.6359, d_loss: 1.39205325, g_loss: 0.67508668
Epoch: [ 1] [ 506/1093] time: 3875.6370, d_loss: 1.39611387, g_loss: 0.67204535
[Sample] d_loss: 1.37556362, g_loss: 0.69815457
Epoch: [ 1] [ 507/1093] time: 3877.9957, d_loss: 1.39341450, g_loss: 0.67685163
Epoch: [ 1] [ 508/1093] time: 3880.4070, d_loss: 1.39084995, g_loss: 0.67754412
Epoch: [ 1] [ 509/1093] time: 3882.5755, d_loss: 1.40043855, g_loss: 0.66707742
Epoch: [ 1] [ 510/1093] time: 3884.5566, d_loss: 1.38664675, g_loss: 0.67468828
Epoch: [ 1] [ 511/1093] time: 3886.9479, d_loss: 1.39450240, g_loss: 0.66686535
Epoch: [ 1] [ 512/1093] time: 3889.1964, d_loss: 1.38870108, g_loss: 0.67924225
Epoch: [ 1] [ 513/1093] time: 3891.3575, d_loss: 1.39083517, g_loss: 0.68065596
Epoch: [ 1] [ 514/1093] time: 3893.6961, d_loss: 1.38016534, g_loss: 0.68610257
Epoch: [ 1] [ 515/1093] time: 3895.9473, d_loss: 1.38265920, g_loss: 0.68078399
Epoch: [ 1] [ 516/1093] time: 3897.9557, d_loss: 1.39135432, g_loss: 0.67949045
Epoch: [ 1] [ 517/1093] time: 3899.9467, d_loss: 1.38820958, g_loss: 0.67711371
Epoch: [ 1] [ 518/1093] time: 3902.2179, d_loss: 1.39466333, g_loss: 0.68058121……Epoch: [ 1] [1077/1093] time: 5125.0453, d_loss: 1.37844777, g_loss: 0.68651271
Epoch: [ 1] [1078/1093] time: 5127.2238, d_loss: 1.38850927, g_loss: 0.68094480
Epoch: [ 1] [1079/1093] time: 5129.5851, d_loss: 1.37683725, g_loss: 0.68991780
Epoch: [ 1] [1080/1093] time: 5131.8035, d_loss: 1.39222741, g_loss: 0.66837865
Epoch: [ 1] [1081/1093] time: 5133.8046, d_loss: 1.38264728, g_loss: 0.67701787
Epoch: [ 1] [1082/1093] time: 5135.7957, d_loss: 1.39265454, g_loss: 0.67443299
Epoch: [ 1] [1083/1093] time: 5138.0342, d_loss: 1.39083576, g_loss: 0.68285644
Epoch: [ 1] [1084/1093] time: 5140.3855, d_loss: 1.39100790, g_loss: 0.67561376
Epoch: [ 1] [1085/1093] time: 5142.3541, d_loss: 1.38509417, g_loss: 0.67930484
Epoch: [ 1] [1086/1093] time: 5144.3652, d_loss: 1.38570714, g_loss: 0.67512459
Epoch: [ 1] [1087/1093] time: 5146.8339, d_loss: 1.37933540, g_loss: 0.67861497
Epoch: [ 1] [1088/1093] time: 5149.1052, d_loss: 1.39024305, g_loss: 0.67276442
Epoch: [ 1] [1089/1093] time: 5151.1162, d_loss: 1.37893343, g_loss: 0.68706435
Epoch: [ 1] [1090/1093] time: 5153.1038, d_loss: 1.38589072, g_loss: 0.67717320
Epoch: [ 1] [1091/1093] time: 5155.4151, d_loss: 1.38973820, g_loss: 0.67712557
Epoch: [ 1] [1092/1093] time: 5157.8440, d_loss: 1.38368809, g_loss: 0.67974091
Epoch: [ 2] [   0/1093] time: 5159.8150, d_loss: 1.38032269, g_loss: 0.67759383
Epoch: [ 2] [   1/1093] time: 5162.0339, d_loss: 1.37580657, g_loss: 0.67377681
Epoch: [ 2] [   2/1093] time: 5164.4152, d_loss: 1.37951207, g_loss: 0.67664278
Epoch: [ 2] [   3/1093] time: 5166.4536, d_loss: 1.39463484, g_loss: 0.67749333
Epoch: [ 2] [   4/1093] time: 5168.4547, d_loss: 1.38351607, g_loss: 0.67323297
Epoch: [ 2] [   5/1093] time: 5170.9160, d_loss: 1.39039516, g_loss: 0.66864181
Epoch: [ 2] [   6/1093] time: 5173.2147, d_loss: 1.39086890, g_loss: 0.68247157
Epoch: [ 2] [   7/1093] time: 5175.3358, d_loss: 1.40376759, g_loss: 0.67604411
Epoch: [ 2] [   8/1093] time: 5177.3142, d_loss: 1.39150715, g_loss: 0.67578733
Epoch: [ 2] [   9/1093] time: 5179.6255, d_loss: 1.37265015, g_loss: 0.68143678
Epoch: [ 2] [  10/1093] time: 5182.0736, d_loss: 1.39045727, g_loss: 0.68101263
Epoch: [ 2] [  11/1093] time: 5184.2047, d_loss: 1.39368677, g_loss: 0.67329615
Epoch: [ 2] [  12/1093] time: 5186.1958, d_loss: 1.39578104, g_loss: 0.67907357
Epoch: [ 2] [  13/1093] time: 5188.6146, d_loss: 1.38878369, g_loss: 0.67477858
[Sample] d_loss: 1.36533904, g_loss: 0.70099354
Epoch: [ 2] [  14/1093] time: 5191.1659, d_loss: 1.39303446, g_loss: 0.68040711
Epoch: [ 2] [  15/1093] time: 5193.3644, d_loss: 1.38526893, g_loss: 0.67990983
Epoch: [ 2] [  16/1093] time: 5195.7657, d_loss: 1.39147758, g_loss: 0.68214095
Epoch: [ 2] [  17/1093] time: 5197.8844, d_loss: 1.36999416, g_loss: 0.69020271……Epoch: [ 2] [ 910/1093] time: 7159.6691, d_loss: 1.38843203, g_loss: 0.67605901
Epoch: [ 2] [ 911/1093] time: 7161.7976, d_loss: 1.40062439, g_loss: 0.66792578
Epoch: [ 2] [ 912/1093] time: 7164.0088, d_loss: 1.38792086, g_loss: 0.67560351
Epoch: [ 2] [ 913/1093] time: 7166.4575, d_loss: 1.38766861, g_loss: 0.67637527
[Sample] d_loss: 1.38370931, g_loss: 0.69774455
Epoch: [ 2] [ 914/1093] time: 7168.9888, d_loss: 1.39563513, g_loss: 0.67776477
Epoch: [ 2] [ 915/1093] time: 7171.2900, d_loss: 1.38675511, g_loss: 0.67512888
Epoch: [ 2] [ 916/1093] time: 7173.6588, d_loss: 1.38995445, g_loss: 0.67824239
Epoch: [ 2] [ 917/1093] time: 7175.6899, d_loss: 1.38771570, g_loss: 0.67128199
Epoch: [ 2] [ 918/1093] time: 7177.9085, d_loss: 1.38684642, g_loss: 0.68519258
Epoch: [ 2] [ 919/1093] time: 7180.3298, d_loss: 1.37333655, g_loss: 0.68652695……Epoch: [ 3] [ 362/1093] time: 8356.1996, d_loss: 1.39512014, g_loss: 0.66916156
Epoch: [ 3] [ 363/1093] time: 8358.3508, d_loss: 1.39369631, g_loss: 0.67236710
Epoch: [ 3] [ 364/1093] time: 8360.7621, d_loss: 1.38735843, g_loss: 0.68572378
Epoch: [ 3] [ 365/1093] time: 8362.7831, d_loss: 1.39971066, g_loss: 0.67346537
Epoch: [ 3] [ 366/1093] time: 8364.7842, d_loss: 1.39366436, g_loss: 0.67099309
Epoch: [ 3] [ 367/1093] time: 8367.0154, d_loss: 1.38990140, g_loss: 0.67454803
Epoch: [ 3] [ 368/1093] time: 8369.3366, d_loss: 1.38183749, g_loss: 0.68153870
Epoch: [ 3] [ 369/1093] time: 8371.3877, d_loss: 1.38687146, g_loss: 0.67545623
Epoch: [ 3] [ 370/1093] time: 8373.4989, d_loss: 1.38756406, g_loss: 0.68393183
Epoch: [ 3] [ 371/1093] time: 8375.8701, d_loss: 1.39338064, g_loss: 0.68219018
Epoch: [ 3] [ 372/1093] time: 8378.0713, d_loss: 1.38763750, g_loss: 0.67938375
Epoch: [ 3] [ 373/1093] time: 8380.0724, d_loss: 1.39371848, g_loss: 0.67651957
Epoch: [ 3] [ 374/1093] time: 8382.3936, d_loss: 1.38683343, g_loss: 0.67617160
Epoch: [ 3] [ 375/1093] time: 8384.6548, d_loss: 1.37663138, g_loss: 0.68140066
Epoch: [ 3] [ 376/1093] time: 8386.6659, d_loss: 1.37809563, g_loss: 0.68609798
Epoch: [ 3] [ 377/1093] time: 8388.6870, d_loss: 1.39943898, g_loss: 0.67443997
Epoch: [ 3] [ 378/1093] time: 8390.6980, d_loss: 1.39024842, g_loss: 0.67799813
Epoch: [ 3] [ 379/1093] time: 8393.0593, d_loss: 1.38977277, g_loss: 0.67707658
Epoch: [ 3] [ 380/1093] time: 8395.2905, d_loss: 1.38423812, g_loss: 0.68118286
Epoch: [ 3] [ 381/1093] time: 8397.4416, d_loss: 1.38743722, g_loss: 0.67777479
Epoch: [ 3] [ 382/1093] time: 8399.8829, d_loss: 1.37790775, g_loss: 0.68277538
Epoch: [ 3] [ 383/1093] time: 8402.1041, d_loss: 1.38662457, g_loss: 0.68058980
Epoch: [ 3] [ 384/1093] time: 8404.1052, d_loss: 1.39429832, g_loss: 0.67511570
Epoch: [ 3] [ 385/1093] time: 8406.5865, d_loss: 1.38111138, g_loss: 0.68313456
Epoch: [ 3] [ 386/1093] time: 8408.8477, d_loss: 1.38022339, g_loss: 0.68807602
Epoch: [ 3] [ 387/1093] time: 8410.8788, d_loss: 1.37367630, g_loss: 0.68106210
Epoch: [ 3] [ 388/1093] time: 8413.1800, d_loss: 1.37601101, g_loss: 0.68398643
Epoch: [ 3] [ 389/1093] time: 8415.5213, d_loss: 1.38206851, g_loss: 0.68312538
Epoch: [ 3] [ 390/1093] time: 8417.5339, d_loss: 1.39440620, g_loss: 0.67587590
Epoch: [ 3] [ 391/1093] time: 8419.7451, d_loss: 1.38435912, g_loss: 0.68598908
Epoch: [ 3] [ 392/1093] time: 8422.1564, d_loss: 1.38480914, g_loss: 0.67896384
Epoch: [ 3] [ 393/1093] time: 8424.1875, d_loss: 1.39561296, g_loss: 0.67151248
Epoch: [ 3] [ 394/1093] time: 8426.1785, d_loss: 1.38200879, g_loss: 0.67769241
Epoch: [ 3] [ 395/1093] time: 8428.5098, d_loss: 1.38265324, g_loss: 0.67953098
Epoch: [ 3] [ 396/1093] time: 8430.8210, d_loss: 1.38887477, g_loss: 0.68306112
Epoch: [ 3] [ 397/1093] time: 8432.8221, d_loss: 1.37987733, g_loss: 0.68379599
Epoch: [ 3] [ 398/1093] time: 8435.1133, d_loss: 1.38668215, g_loss: 0.68350947
Epoch: [ 3] [ 399/1093] time: 8437.4845, d_loss: 1.38988137, g_loss: 0.67655754
Epoch: [ 3] [ 400/1093] time: 8439.5957, d_loss: 1.39809549, g_loss: 0.66322517
Epoch: [ 3] [ 401/1093] time: 8441.5667, d_loss: 1.38576388, g_loss: 0.67762470
Epoch: [ 3] [ 402/1093] time: 8443.5578, d_loss: 1.39277625, g_loss: 0.67869860
Epoch: [ 3] [ 403/1093] time: 8445.9391, d_loss: 1.37714362, g_loss: 0.68563044
Epoch: [ 3] [ 404/1093] time: 8448.1903, d_loss: 1.38713384, g_loss: 0.68173122
Epoch: [ 3] [ 405/1093] time: 8450.1813, d_loss: 1.38332641, g_loss: 0.67876709
Epoch: [ 3] [ 406/1093] time: 8452.2124, d_loss: 1.38762641, g_loss: 0.67437690
Epoch: [ 3] [ 407/1093] time: 8454.6137, d_loss: 1.39600587, g_loss: 0.67091662
Epoch: [ 3] [ 408/1093] time: 8456.9349, d_loss: 1.39475024, g_loss: 0.67384183
Epoch: [ 3] [ 409/1093] time: 8458.9060, d_loss: 1.38960707, g_loss: 0.67936569
Epoch: [ 3] [ 410/1093] time: 8461.1472, d_loss: 1.40030944, g_loss: 0.67041624
Epoch: [ 3] [ 411/1093] time: 8463.5084, d_loss: 1.39593017, g_loss: 0.67498016
Epoch: [ 3] [ 412/1093] time: 8465.5195, d_loss: 1.38999593, g_loss: 0.67841613
Epoch: [ 3] [ 413/1093] time: 8467.6707, d_loss: 1.38826776, g_loss: 0.67693788
Epoch: [ 3] [ 414/1093] time: 8470.0919, d_loss: 1.38349032, g_loss: 0.68139064
Epoch: [ 3] [ 415/1093] time: 8472.1430, d_loss: 1.39280987, g_loss: 0.67648333
Epoch: [ 3] [ 416/1093] time: 8474.1467, d_loss: 1.38741899, g_loss: 0.68393362
Epoch: [ 3] [ 417/1093] time: 8476.4279, d_loss: 1.38289893, g_loss: 0.68440443
Epoch: [ 3] [ 418/1093] time: 8478.8592, d_loss: 1.38225627, g_loss: 0.68390000
Epoch: [ 3] [ 419/1093] time: 8480.8303, d_loss: 1.38956904, g_loss: 0.68032801
Epoch: [ 3] [ 420/1093] time: 8483.0515, d_loss: 1.39274383, g_loss: 0.67899847
[Sample] d_loss: 1.38313830, g_loss: 0.69713199
Epoch: [ 3] [ 421/1093] time: 8485.8330, d_loss: 1.38047338, g_loss: 0.68255627
Epoch: [ 3] [ 422/1093] time: 8487.8740, d_loss: 1.38204312, g_loss: 0.68332297
Epoch: [ 3] [ 423/1093] time: 8489.8651, d_loss: 1.39266825, g_loss: 0.67830092
Epoch: [ 3] [ 424/1093] time: 8491.8662, d_loss: 1.37269580, g_loss: 0.68564689
Epoch: [ 3] [ 425/1093] time: 8494.2675, d_loss: 1.38354051, g_loss: 0.67787158
Epoch: [ 3] [ 426/1093] time: 8496.5987, d_loss: 1.39322877, g_loss: 0.67212951
Epoch: [ 3] [ 427/1093] time: 8498.5898, d_loss: 1.38431156, g_loss: 0.68219298
Epoch: [ 3] [ 428/1093] time: 8500.9110, d_loss: 1.38419461, g_loss: 0.68294287
Epoch: [ 3] [ 429/1093] time: 8503.6765, d_loss: 1.38120306, g_loss: 0.68784416
Epoch: [ 3] [ 430/1093] time: 8505.8076, d_loss: 1.37416363, g_loss: 0.68105757
Epoch: [ 3] [ 431/1093] time: 8508.4290, d_loss: 1.38731599, g_loss: 0.67775297
Epoch: [ 3] [ 432/1093] time: 8511.1404, d_loss: 1.37534189, g_loss: 0.69095331
Epoch: [ 3] [ 433/1093] time: 8513.5317, d_loss: 1.37824667, g_loss: 0.68170595
Epoch: [ 3] [ 434/1093] time: 8516.2832, d_loss: 1.39408314, g_loss: 0.67305529
Epoch: [ 3] [ 435/1093] time: 8518.4143, d_loss: 1.38113260, g_loss: 0.68300515
Epoch: [ 3] [ 436/1093] time: 8520.6555, d_loss: 1.37323284, g_loss: 0.68911874
Epoch: [ 3] [ 437/1093] time: 8523.2069, d_loss: 1.38123012, g_loss: 0.68157446
Epoch: [ 3] [ 438/1093] time: 8525.7382, d_loss: 1.40273654, g_loss: 0.67261004
Epoch: [ 3] [ 439/1093] time: 8527.9470, d_loss: 1.39703226, g_loss: 0.67010546
Epoch: [ 3] [ 440/1093] time: 8530.5494, d_loss: 1.39484859, g_loss: 0.67308128
Epoch: [ 3] [ 441/1093] time: 8533.0077, d_loss: 1.38215089, g_loss: 0.67669988
Epoch: [ 3] [ 442/1093] time: 8535.0588, d_loss: 1.39523888, g_loss: 0.67494458
Epoch: [ 3] [ 443/1093] time: 8537.3100, d_loss: 1.39211106, g_loss: 0.68104178
Epoch: [ 3] [ 444/1093] time: 8539.8213, d_loss: 1.39172995, g_loss: 0.67493176
Epoch: [ 3] [ 445/1093] time: 8542.0925, d_loss: 1.37271404, g_loss: 0.68719661

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